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Intelligent optimization algorithm grid computing-based applications

机译:基于智能优化算法网格计算的应用

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摘要

Optimization algorithms have been rapidly promoted and applied in many engineering fields, such as system control, artificial intelligence, pattern recognition, computer engineering, etc.; achieving optimization in the production process has an important role in improving production efficiency and efficiency and saving resources. At the same time, the theoretical research of optimization methods also plays an important role in improving the performance of the algorithm, widening the application field of the algorithm, and improving the algorithm system. Based on the above background, the purpose of this paper is to apply the intelligent optimization algorithm based on grid technology platform to research. This article first briefly introduced the grid computing platform and optimization algorithms; then, through the two application examples of the TSP problem and the Hammerstein model recognition problem, the common intelligent optimization algorithms are introduced in detail. Introduction: Algorithm description, algorithm implementation, case analysis, algorithm evaluation and algorithm improvement. This paper also applies the GDE algorithm to solve the reactive power optimization problems of the IEEE14 node, IEEE30 node and IEEE57 node. The experimental results show that the minimum network loss of the three systems obtained by the GDE algorithm is 12.348161, 16.348152, and 23.645213, indicating that the GDE algorithm is an effective algorithm for solving the reactive power optimization problem of power systems.
机译:许多工程领域的优化算法已迅速促进和应用,例如系统控制,人工智能,模式识别,计算机工程等;在生产过程中实现优化在提高生产效率和效率和节约资源方面具有重要作用。与此同时,优化方法的理论研究也在提高算法的性能方面发挥着重要作用,加宽了算法的应用领域,提高了算法系统。基于以上背景,本文的目的是基于网格技术平台应用基于网格技术平台的智能优化算法。本文首先简要介绍了网格计平台和优化算法;然后,通过TSP问题的两个应用示例和HammerSein模型识别问题,详细介绍了常见的智能优化算法。介绍:算法描述,算法实现,案例分析,算法评估和算法改进。本文还应用GDE算法来解决IEEE14节点,IEEE30节点和IEEE57节点的无功功率优化问题。实验结果表明,GDE算法获得的三个系统的最小网络损耗是12.348161,16.348152和23.645213,表明GDE算法是解决电力系统的无功功率优化问题的有效算法。

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